60 lines
2.6 KiB
TeX
60 lines
2.6 KiB
TeX
% 缩写定义
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\Abbreviations{ \centering
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\renewcommand{\arraystretch}{1.2}
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\begin{tabular}{lll}
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\textbf{外文缩略字母} & \textbf{外文全称} & \textbf{中文说明}\\
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\midrule
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% 模型与架构
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LLM & Large Language Model & 大语言模型\\
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FFN & Feed-Forward Network & 前馈网络\\
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GQA & Grouped Query Attention & 分组查询注意力\\
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MHSA & Multi-Head Self-Attention & 多头自注意力\\
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MoE & Mixture of Experts & 混合专家\\
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RoPE & Rotary Position Embedding & 旋转位置编码\\
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\\
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% 适配方法(通用)
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PEFT & Parameter-Efficient Fine-Tuning & 参数高效微调\\
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LoRA & Low-Rank Adaptation & 低秩适配\\
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DoRA & Weight-Decomposed Low-Rank Adaptation & 权重分解低秩适配\\
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AdaLoRA & Adaptive Low-Rank Adaptation & 自适应低秩适配\\
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SFT & Supervised Fine-Tuning & 监督微调\\
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RAG & Retrieval-Augmented Generation & 检索增强生成\\
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\\
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% 本文提出的方法
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CAM & Contextual Attention Modulation & 上下文注意力调制\\
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HyCAM & Hybrid Contextual Attention Modulation & 混合上下文注意力调制\\
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RoSA & RoPE-aware Selective Adaptation & RoPE感知选择性适配\\
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RoAE & RoPE-aware Attention Enhancement & RoPE感知注意力增强\\
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DLS & Dynamic Layer Selection & 动态层选择\\
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DyPAM & Dynamic Positional Attention Modulation & 动态位置注意力调制\\
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CASCADE & Coarse-to-Fine Spectral Cascading & 从粗到细频谱级联\\
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MESSA & Multi-task Efficient Shared-Specific & 多任务高效共享-特有\\
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& \quad Sparse Adaptation & \quad 稀疏适配\\
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\\
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% 信号处理
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DCT & Discrete Cosine Transform & 离散余弦变换\\
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IDCT & Inverse Discrete Cosine Transform & 逆离散余弦变换\\
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FiLM & Feature-wise Linear Modulation & 特征级线性调制\\
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\\
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% 评测与数据
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POI & Point of Interest & 兴趣点\\
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QA & Question Answering & 问答\\
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ETA & Estimated Time of Arrival & 预计到达时间\\
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GPS & Global Positioning System & 全球定位系统\\
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WGS84 & World Geodetic System 1984 & 1984世界大地坐标系\\
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\\
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% 评估指标
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MAE & Mean Absolute Error & 平均绝对误差\\
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RMSE & Root Mean Square Error & 均方根误差\\
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MAPE & Mean Absolute Percentage Error & 平均绝对百分比误差\\
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HR & Hit Ratio & 命中率\\
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NDCG & Normalized Discounted Cumulative Gain & 归一化折损累计增益\\
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BLEU & Bilingual Evaluation Understudy & 双语评估替补\\
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\\
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% 深度学习基础
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CNN & Convolutional Neural Network & 卷积神经网络\\
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RNN & Recurrent Neural Network & 循环神经网络\\
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GNN & Graph Neural Network & 图神经网络\\
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\end{tabular}
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}
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